| // SPDX-License-Identifier: GPL-2.0 | 
 | /* | 
 |  * lib/minmax.c: windowed min/max tracker | 
 |  * | 
 |  * Kathleen Nichols' algorithm for tracking the minimum (or maximum) | 
 |  * value of a data stream over some fixed time interval.  (E.g., | 
 |  * the minimum RTT over the past five minutes.) It uses constant | 
 |  * space and constant time per update yet almost always delivers | 
 |  * the same minimum as an implementation that has to keep all the | 
 |  * data in the window. | 
 |  * | 
 |  * The algorithm keeps track of the best, 2nd best & 3rd best min | 
 |  * values, maintaining an invariant that the measurement time of | 
 |  * the n'th best >= n-1'th best. It also makes sure that the three | 
 |  * values are widely separated in the time window since that bounds | 
 |  * the worse case error when that data is monotonically increasing | 
 |  * over the window. | 
 |  * | 
 |  * Upon getting a new min, we can forget everything earlier because | 
 |  * it has no value - the new min is <= everything else in the window | 
 |  * by definition and it's the most recent. So we restart fresh on | 
 |  * every new min and overwrites 2nd & 3rd choices. The same property | 
 |  * holds for 2nd & 3rd best. | 
 |  */ | 
 | #include <linux/module.h> | 
 | #include <linux/win_minmax.h> | 
 |  | 
 | /* As time advances, update the 1st, 2nd, and 3rd choices. */ | 
 | static u32 minmax_subwin_update(struct minmax *m, u32 win, | 
 | 				const struct minmax_sample *val) | 
 | { | 
 | 	u32 dt = val->t - m->s[0].t; | 
 |  | 
 | 	if (unlikely(dt > win)) { | 
 | 		/* | 
 | 		 * Passed entire window without a new val so make 2nd | 
 | 		 * choice the new val & 3rd choice the new 2nd choice. | 
 | 		 * we may have to iterate this since our 2nd choice | 
 | 		 * may also be outside the window (we checked on entry | 
 | 		 * that the third choice was in the window). | 
 | 		 */ | 
 | 		m->s[0] = m->s[1]; | 
 | 		m->s[1] = m->s[2]; | 
 | 		m->s[2] = *val; | 
 | 		if (unlikely(val->t - m->s[0].t > win)) { | 
 | 			m->s[0] = m->s[1]; | 
 | 			m->s[1] = m->s[2]; | 
 | 			m->s[2] = *val; | 
 | 		} | 
 | 	} else if (unlikely(m->s[1].t == m->s[0].t) && dt > win/4) { | 
 | 		/* | 
 | 		 * We've passed a quarter of the window without a new val | 
 | 		 * so take a 2nd choice from the 2nd quarter of the window. | 
 | 		 */ | 
 | 		m->s[2] = m->s[1] = *val; | 
 | 	} else if (unlikely(m->s[2].t == m->s[1].t) && dt > win/2) { | 
 | 		/* | 
 | 		 * We've passed half the window without finding a new val | 
 | 		 * so take a 3rd choice from the last half of the window | 
 | 		 */ | 
 | 		m->s[2] = *val; | 
 | 	} | 
 | 	return m->s[0].v; | 
 | } | 
 |  | 
 | /* Check if new measurement updates the 1st, 2nd or 3rd choice max. */ | 
 | u32 minmax_running_max(struct minmax *m, u32 win, u32 t, u32 meas) | 
 | { | 
 | 	struct minmax_sample val = { .t = t, .v = meas }; | 
 |  | 
 | 	if (unlikely(val.v >= m->s[0].v) ||	  /* found new max? */ | 
 | 	    unlikely(val.t - m->s[2].t > win))	  /* nothing left in window? */ | 
 | 		return minmax_reset(m, t, meas);  /* forget earlier samples */ | 
 |  | 
 | 	if (unlikely(val.v >= m->s[1].v)) | 
 | 		m->s[2] = m->s[1] = val; | 
 | 	else if (unlikely(val.v >= m->s[2].v)) | 
 | 		m->s[2] = val; | 
 |  | 
 | 	return minmax_subwin_update(m, win, &val); | 
 | } | 
 | EXPORT_SYMBOL(minmax_running_max); | 
 |  | 
 | /* Check if new measurement updates the 1st, 2nd or 3rd choice min. */ | 
 | u32 minmax_running_min(struct minmax *m, u32 win, u32 t, u32 meas) | 
 | { | 
 | 	struct minmax_sample val = { .t = t, .v = meas }; | 
 |  | 
 | 	if (unlikely(val.v <= m->s[0].v) ||	  /* found new min? */ | 
 | 	    unlikely(val.t - m->s[2].t > win))	  /* nothing left in window? */ | 
 | 		return minmax_reset(m, t, meas);  /* forget earlier samples */ | 
 |  | 
 | 	if (unlikely(val.v <= m->s[1].v)) | 
 | 		m->s[2] = m->s[1] = val; | 
 | 	else if (unlikely(val.v <= m->s[2].v)) | 
 | 		m->s[2] = val; | 
 |  | 
 | 	return minmax_subwin_update(m, win, &val); | 
 | } | 
 | EXPORT_SYMBOL(minmax_running_min); |